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首页> 外文期刊>International journal of mathematics and mathematical sciences >Robust wavelet estimation to eliminate simultaneously the effects of boundary problems, outliers, and correlated noise
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Robust wavelet estimation to eliminate simultaneously the effects of boundary problems, outliers, and correlated noise

机译:强大的小波估计可同时消除边界问题,离群值和相关噪声的影响

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摘要

Classical wavelet thresholding methods suffer from boundary problems caused by the application of the wavelet transformations to a finite signal. As a result, large bias at the edges and artificial wiggles occur when the classical boundary assumptions are not satisfied. Although polynomial wavelet regression and local polynomial wavelet regression effectively reduce the risk of this problem, the estimates from these two methods can be easily affected by the presence of correlated noise and outliers, giving inaccurate estimates. This paper introduces two robust methods in which the effects of boundary problems, outliers, and correlated noise are simultaneously taken into account. The proposed methods combine thresholding estimator with either a local polynomial model or a polynomial model using the generalized least squares method instead of the ordinary one. A primary step that involves removing the outlying observations through a statistical function is considered as well. The practical performance of the proposed methods has been evaluated through simulation experiments and real data examples. The results are strong evidence that the proposed method is extremely effective in terms of correcting the boundary bias and eliminating the effects of outliers and correlated noise.
机译:经典的小波阈值处理方法存在因将小波变换应用于有限信号而引起的边界问题。结果,当不满足经典边界假设时,会在边缘产生较大的偏差,并出现人为摆动。尽管多项式小波回归和局部多项式小波回归有效地降低了此问题的风险,但是这两种方法的估计值很容易受到相关噪声和异常值的影响,从而给出了不准确的估计值。本文介绍了两种鲁棒的方法,其中同时考虑了边界问题,离群值和相关噪声的影响。提出的方法将阈值估计器与局部多项式模型或使用广义最小二乘法而不是普通的最小二乘法的多项式模型相结合。还考虑了一个主要步骤,该步骤涉及通过统计功能删除边远的观察结果。通过仿真实验和实际数据实例对所提出方法的实际性能进行了评估。结果是有力的证据,表明所提出的方法在校正边界偏差以及消除离群值和相关噪声的影响方面非常有效。

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